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Probabilistic analysis and control of uncertain dynamic systems: Generalized polynomial chaos expansion approaches

机译:不确定动力系统的概率分析与控制:广义多项式混沌扩展方法

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Uncertainties are ubiquitous in mathematical models of complex systems and this paper considers the incorporation of generalized polynomial chaos expansions for uncertainty propagation and quantification into robust control design. Generalized polynomial chaos expansions are more computationally efficient than Monte Carlo simulation for quantifying the influence of stochastic parametric uncertainties on the states and outputs. Approximate surrogate models based on generalized polynomial chaos expansions are applied to design optimal controllers by solving stochastic optimizations in which the control laws are suitably parameterized, and the cost functions and probabilistic (chance) constraints are approximated by spectral representations. The approximation error is shown to converge to zero as the number of terms in the generalized polynomial chaos expansions increases. Several proposed approximate stochastic optimization problem formulations are demonstrated for a probabilistic robust optimal IMC control problem.
机译:不确定性在复杂系统的数学模型中无处不在,本文考虑将用于不确定性传播和量化的广义多项式混沌展开纳入鲁棒控制设计中。在量化随机参数不确定性对状态和输出的影响方面,广义多项式混沌展开比蒙特卡洛模拟更有效地计算。通过解决随机优化问题,基于广义多项式混沌扩展的近似代理模型被用于设计最优控制器,在该过程中,对控制律进行了适当的参数化,并通过频谱表示来近似成本函数和概率(机会)约束。随着广义多项式混沌展开式中项数的增加,近似误差收敛为零。针对概率鲁棒最优IMC控制问题,证明了几种拟议的近似随机优化问题公式。

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